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* An earlier version of this paper was titled The World Price of Earnings Management.
Corresponding author: Michael Welker, School of Business, A409 Mac-Corry Hall, Queens University,
Kingston, Ontario K7L 3N6, Canada. Ph: 613-533-2317. Fax: 613-533-6589. E-Mail:
mw18@qsilver.queensu.ca. The first author thanks Queens University for their research support when he
was a Resident Scholar there in the summer of 2001. We are grateful for the discussions on earnings opacity
with Daniel Beneish, Jamie Pratt, Scott Richardson, Dan Thornton and Jim Wahlen, and for comments from
workshop participants at Houston, Indiana, Michigan, New York University and Queens. We thank Joon
Ho Hwang for being such a careful research assistant.
The World Price of
Earnings Opacity*
Utpal Bhattacharya
Indiana University
Hazem Daouk
University of Michigan
Michael Welker
Queens University
JEL Classification: G15, G30, M41
Keywords: earnings opacity; cost of equity; turnover
Data Availability:The data used in this study are publicly available from the sources indicated in the text.
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THE WORLD PRICE OF EARNINGS OPACITY
Abstract
We analyze the financial statements of 58,653 firm-years from 34 countries for the period 1985-1998
to construct a panel data set measuring three dimensions of earnings opacity per country earnings
aggressiveness, loss avoidance, and earnings smoothing. We combine these three dimensions to obtain an
overall earnings opacity time-series measure per country. We find that overall earnings opacity in the world
is declining in the late 1990s.
The paper then goes on to explore whether earnings opacity affects two dimensions of an equity
market in a country the return the shareholders demand and how much they trade. Our panel data tests
document that, after controlling for other influences, an increase in earnings opacity in a country is linked
to a decrease in trading in the stock market of that country. The results with respect to the cost of equity of
the country are mixed; one test shows a positive linkage, whereas another test shows no linkage.
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1In a previous version of this paper, we had also investigated the effect of earnings opacity in a country on U.S. equity holdings in that
country. Because of lack of data, our tests were cross-sectional and not panel data tests, as was the case for the other two equity market measures.
As the number of countries were roughly of the same order of magnitude as the number of control variables, these cross-sectional tests had
embarrassingly few degrees of freedom; therefore, we dropped this section.
2See the special reports on Enron in the Financial Times (http://specials.ft.com/afr2002/) for a comprehensive coverage of all views.
-1-
I. INTRODUCTION
The goal of this paper is to measure the level of earnings opacity occurring in a country every year,
and then test whether earnings opacity affects the equity market of that country. To be precise, we explore
whether earnings opacity in a country is associated with the return shareholders demand for holding equity
in that country and is associated with shareholder trading of equity in that country.1
After the debacle of Enron in late 2001, the prevailing view in the U.S. Congress and in the global
financial press is that earnings opacity, by obscuring information about a firms underlying performance,
undermines the investing publics confidence in capital markets, and something should be immediately done
about it.2 All this sound and fury about Enron, however, obscures two critical questions. First, how bad is
this phenomenon of earnings opacity in the U.S. compared to earnings opacity in the rest of the world?
Second, and more important, do sophisticated investors care, in the sense that they trade less or demand an
extra required return the earnings opacity premium in countries where earnings opacity is pervasive?
We attempt to answer both these questions in this paper by exploring the link between earnings opacity and
equity markets in a broad cross-section of countries.
What is earnings opacity? Earnings opacity is a measure that reflects how little information there
is in a firms earnings number about its true, but unobservable, economic performance. Our definition
respects the goals of financial reporting laid out in various statements of the Financial Accounting Standards
Board (FASB). One such statement reads, The primary focus of financial reporting is information about
an enterprisess performance provided by measures of earnings and its components. (FASB 1978, SFAC
No 1, paragraph 43). Our definition also reflects the views of many academic accounting researchers. See,
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-2-
for example, Ball, Kothari, and Robin (2000), who view earnings transparency the opposite of earnings
opacity as the timely incorporation of (unobservable) economic income into accounting earnings.
Earnings of a particular firm could be opaque because of a complex interaction between three
factors: managerial motivation, accounting standards, and the enforcement of accounting standards (audit
quality). It could be that earnings are opaque because managers have a motive to manipulate earnings, and
they can do this either because accounting standards are loose and/or their enforcement is lax. It could also
be that earnings are opaque, not because managers manipulate earnings, but simply because accounting
standards are bad.
Earnings opacity is inherently difficult to measure, particularly across countries, because it is not
possible to pinpoint managements motives, and it is difficult to compare accounting standards and the
enforcement of these accounting standards. So, instead of attempting to measure any of the above three
factors directly, we focus on distributional properties of reported accounting numbers across countries and
across time that suggest earnings opacity. Specifically, we use measures that are intended to capture three
attributes of earnings numbers that are associated with earnings opacity: earnings aggressiveness, loss
avoidance, and earnings smoothing. We focus on these three dimensions because the past literature has
identified the existence of these three dimensions as weakening the link between accounting performance
and the true economic performance of a firm. We discuss the details of our three earnings opacity measures
in the next section of the paper.
Our first measure of earnings opacity is earnings aggressiveness. Ball, Kothari and Robin (2000)
argue that accounting conservatism the opposite of earnings aggressiveness which is the quicker
incorporation of economic losses and the slower incorporation of economic gains, arises in common law
countries to ameliorate information asymmetry. In code law countries, on the other hand, institutional
features such as closer stakeholder relations are used to resolve informational problems. They go on to argue
that accounting conservatism is related to accounting transparency, implying that earnings aggressiveness
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3Land and Lang (2002) document convergence of some earnings multiples between Australia, Canada, Germany, France, U.K., Japan
and the U.S.A. in the period 1987-1999.
-3-
is positively linked to earnings opacity. Note that we remain agnostic as to why earnings aggressiveness
comes about; it could be that standards are not as conservative as they should be, or it could be that managers
have an incentive to increase reported earnings numbers (to understand these managerial motivations, see,
for example, Rangan (1998), Teoh et al. (1998), Shivakumar (2000), Healy (1985), Barth et al. (1999).)
Our second measure of earnings opacity is loss avoidance behavior. Hayn (1995), and Burgstahler
and Dichev (1997) present persuasive evidence that U.S. firms engage in earnings management to avoid
reporting negative earnings. DeGeorge et al. (1999) provide evidence that suggests that the following
hierarchy exists among three earnings thresholds: 1) avoiding negative earnings, 2) reporting increases in
quarterly earnings, and 3) meeting analysts earnings forecasts. As Burgstahler and Dichev (1997) and
DeGeorge et al. (1999) discuss, these results indicate that incentives to report positive earnings (i.e., beat a
benchmark of zero earnings) exist for some sample firms. Such loss avoidance behavior obscures the
relationship between earnings and economic performance, increasing earnings opacity.
Our third measure of earnings opacity is earnings smoothing. Some accounting standards (example,
in cases of high book/tax conformity) or some managerial motives may lead to smooth earnings over time
(see, for example, Trueman and Titman (1988) and Fudenberg and Tirole (1995)). If accounting earnings
are artificially smooth, they will fail to depict the swings in underlying firm performance, which will increase
earnings opacity.
We construct a panel data set for each of these three measures of earnings opacity earnings
aggressiveness, loss avoidance, and earnings smoothing and then combine them to obtain an overall
earnings opacity time-series measure per country. An interesting finding from this time-series measure is
that overall earnings opacity in the world seems to be declining in the late 1990s. There is some evidence
of convergence across various countries, but this is driven almost entirely by the earnings aggressiveness
measure.3
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4See Glosten and Milgrom (1985) and Kyle (1985) for formal models.
5See Amihud and Mendelson (1986) for a formal model on why this should happen for riskless assets. Jacoby, Fowler, and Gottesman
(2000) extend this to risky assets. Brennan and Subrahmanyam (1996) provide convincing empirical evidence.
-4-
We then estimate earnings opacity per country. Our estimates are significantly associated with
several variables that have been used in the past accounting literature as proxies for the overall quality of a
financial reporting regime of a country. For example, we find that earnings aggressiveness, loss avoidance,
and earnings smoothing in a country decrease as the number of auditors per 100,000 population in that
country increases. An interesting finding in these cross-sectional tests is a negative finding: the use of
International Accounting Standards (IAS) seems to have an insignificant effect on our measures of earnings
opacity.
The second part of our paper goes on to investigate if earnings opacity affects equity markets.
Bushman and Smith (2001), who call for more research using cross-country designs to explore the links
between financial accounting information and corporate governance, identify three channels by which
earnings opacity may affect equity and other markets. First, better financial accounting information helps
investors distinguish better between good and bad investments, which decreases estimation risk, which
decreases the firms cost of equity. Second, better accounting information helps investors distinguish better
between good and bad managers, which decreases agency costs, which decreases the firms cost of equity.
Third, earnings opacity, by weakening the link between reported accounting earnings and unobservable
economic earnings, may increase the level of asymmetric information. Asymmetric information can affect
equity markets in the following way. An increase in asymmetric information would lead to an increase in
the adverse selection problem a liquidity provider faces when trading with insiders. The liquidity providers
in such a market would protect themselves by increasing their sell price and decreasing their buy price.4 This
increases the transaction cost, which in turn induces a shareholder to require an even higher return on equity
for compensation.5 An increase in transaction costs would also make shareholders trade less often or not
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6See Bhattacharya and Spiegel (1991) for an analysis of the critical level of asymmetric information needed for a market breakdown.
-5-
trade at all.6
It is important to mention here that three assumptions lead to the hypothesis that earnings opacity
adversely affects equity markets. First, markets are efficient in the sense that investors can detect the level
of earnings opacity, but they cannot see through it. This implies that the opaque earnings of any particular
organization adds noise to the signal about its underlying economic performance. Second, the informational
asymmetry created by earnings opacity is not completely resolved through other some other communication
mechanism, like alternate disclosures directed at large, affiliated stakeholders. Third, the informational risk
caused by earnings opacity is an important factor relative to the other factors that affect equity markets, and
so it is priced. None of these assumptions may hold. Shivakumar (2000) gives some interesting evidence
to show that the capital market sees through earnings manipulation during seasoned equity offerings. The
above assumptions, therefore, need to be tested. This is what the second part of our paper attempts to do.
Many factors may affect equity markets in a country, not just earnings opacity. It is impossible for
us to control for all these factors in simple cross-sectional regressions. So we employ panel data tests that
control for country fixed-effects, for country-specific heteroskedasticity, and for country-specific
autocorrelation. These panel data tests are very powerful because, by construction, they control for all
country-specific variables that affect equity markets, as long as these variables do not change over the test
period. We control for all country-specific variables that the literature reveals to us have changed in our
1985 to 1998 test period.
We first examine the effect of earnings opacity on the return shareholders demand for holding equity
(cost of equity). We measure the effect on the cost of equity using two different approaches. We discuss
the details of these approaches, and their merits and demerits, in the next section of the paper.
The first approach is to extract the cost of equity from the dividend discount model. This dividend
yield approach has been used by Bekaert and Harvey (2000), and we use a simplified version of their model.
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After controlling for some variables that have changed in our test period and have been documented in
previous papers to affect the cost of capital, we find in our panel data tests that earnings opacity has
significant adverse effects on the cost of equity. An increase in overall earnings opacity from the 25th
percentile rank to the 75th
percentile rank is associated with a 3.3 % increase in the cost of equity.
The second approach uses an international asset pricing factor model. It is a simplified version of
Bekaert and Harvey (1995). Their empirical specification allows for partial integration of a country to the
world equity markets. After controlling for some variables that have changed in our test period and have
been documented in previous papers to affect the cost of capital, we find in our panel data tests that earnings
opacity does not seem to have any significant effect on the cost of equity.
Why does one test reveal a linkage between earnings opacity and the cost of equity and the other test
does not? One reason may be that the international asset pricing factor model lacks power. This is so
because in the international asset pricing factor model, one has to estimate all the independent variables,
which introduces noise, which diminishes power. Bekaert and Harvey (2000) discuss the many advantages
the dividend yield approach has over the international asset pricing factor model with respect to this point.
Another reason could be that the results of the international asset pricing factor model are correct, whereas
the dividend yield approach yields incorrect results. Shareholders may be smart enough to see through
earnings opacity, or earnings opacity may not be an important factor, and so earnings opacity is not priced.
There is evidence, however, against this hypothesis in papers by Sloan (1996), Collins and Hribar (2000),
and Chan et al. (2001). They find that accruals, which is one measure of earnings opacity in the literature
and is a measure in our paper as well, predicts future returns.
Our last set of panel data tests examines the effect of earnings opacity on the level of trading. The
details of the data set used to measure trade are discussed in the next section. After controlling for some
variables that have changed in our test period and have been documented in previous papers to affect trade
in a stock market, we find that earnings opacity has significant adverse effects on trade. A decrease in overall
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-7-
earnings opacity from the 75th percentile rank to the 25th percentile rank is associated with a 5.0 % increase
in annual trade.
To summarize, we find that, after controlling for other influences, an increase in earnings opacity
in a country is linked to a decrease in trading in the stock market of that country. The results with respect
to the cost of equity of the country are mixed; one test shows a positive linkage, whereas another test shows
no linkage.
A cross-country comparison of earnings opacity has many advantages. First, because of considerable
differences in accounting standards and audit quality across the globe, we can obtain an enviable dispersion
in earnings opacity around the world. Second, as Bushman and Smith (2001) state, the cross-country
differences in earnings opacity can be linked meaningfully to the cross-country differences in economic
efficiency and institutional factors. Ours is not the first paper to exploit these two advantages. It is a part
of the growing international accounting literature that examines the value relevance of accounting measures
(Alford et al. (1993), Harris et al. (1994), Joos and Lang (1994), Ali and Hwang (2000), Land and Lang
(2002)), analyst forecasts (Ashbaugh and Pincus (2001), Chang et al. (2000)), earnings timeliness and
conservatism (Ball et al. (2000)), or the effect of institutional factors on earnings management (Leuz et al.
(2001).) Our contribution to the above literature is that we are the first paper, as far as we know, that
measures earnings opacity at a country level every year to form a panel data set, and then use panel data tests
to check whether earnings opacity adversely affects the equity markets of that country. Our paper should
be viewed as complementary to the paper by Leuz et al.(2001), who measure earnings management at a cross-
sectional level across 31 countries, and then explore whether institutional factors are linked to the cross-
sectional differences in earnings management. Our paper should also be viewed as complementary to a
recent survey conducted by PricewaterhouseCoopers (2001) that constructs a broad measure of opacity in
a particular country, and links it to capital inflows and the country risk premium in sovereign bonds of that
country.
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-8-
The rest of the paper is organized as follows. Section II discusses the methodological issues in the
measurement of the earnings opacity variables as well as the stock market variables cost of equity and
trade. In section III we discuss the data and give some summary statistics. Section IV, which is the main
section of this paper, tests the null hypothesis that the level of earnings opacity in a country does not affect
the stockmarket of that country. We conclude in Section V.
II. MEASUREMENT ISSUES
Earnings Opacity Measures
We focus on distributional properties of reported accounting numbers across countries and across
time to develop metrics for earnings opacity of a country. We make this choice for the following two related
reasons. First, it is difficult for us to measure the complex interaction between the underlying three factors
that lead to earnings opacity in a country: managements intentions, accounting standards and the
enforcement of these accounting standards. For example, it is not clear whether accounting practice responds
to changes in accounting standards and their enforcement or vice versa. Second, even if we could obtain the
above data for a country over a sample period, it would be impossible for us to get this data for a country
every year and create a panel data set.
As previously discussed, we identify three characteristics of accounting numbers that suggest opaque
earnings: earnings aggressiveness, loss avoidance, and earnings smoothing. While none of these measures
is a direct measure of the extent to which accounting earnings fail to correspond to economic earnings in a
particular country, each of these three measures reveals the existence of patterns in reported accounting
numbers that would be expected to result in more opaque earnings. We discuss these three measures in detail
below.
Earnings aggressiveness measure
An important facet of all accounting standards is conservatism, which is the quicker incorporation
of economic losses and the slower incorporation of economic gains in a firms income statement. Ball,
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-9-
Kothari and Robin (2000) argue that accounting conservatism is positively related to accounting
transparency. As earnings aggressiveness is the opposite of conservatism, we expect earnings aggressiveness
to be positively related to earnings opacity.
As earnings aggressiveness is the tendency to delay the realization of losses and speed the realization
of gains, it implies that, if cash flow realizations are held equal, we would expect accruals to increase as
earnings aggressiveness increases. Though it is true that unrealized gains and unrealized losses would
eventually be recognized, the more conservative accounting system is expected to result in more negative
accruals, because a greater proportion of economic losses relative to economic gains will be reflected in the
income statement at a point in time. This motivates us to measure earnings aggressiveness of a country at
a point in time as the median for country i, year t, of accruals divided by lagged total assets. We use the
median observation of scaled accruals to minimize the influence of extreme observations. Higher the median
observation of scaled accruals of country i in year t, higher is the earnings aggressiveness in country i, year
t. Teoh and Wong (2002) present some indirect evidence that scaled accruals affects earnings opacity by
affecting analysts forecast errors.
The effect of earnings aggressiveness on the distribution of accounting earnings vis-a-vis economic
earnings is depicted in the Earnings Aggressiveness graph of Figure 1.
Using scaled accruals to measure earnings aggressiveness has its problems. The most important
problem is that it penalizes countries with high economic growth rates. This is because young firms with
expanding operations in such countries undertake a lot of investment expenditure and tend to sell on credit;
this depresses cash flows with respect to earnings, thus increasing accruals. We address this bias by
controlling for the countrys gross domestic product growth (GDP growth) in all our tests. Ball et al. (2000)
have used an alternative way to measure conservatism, which is to check whether negative economic income,
as reflected in negative security returns, is more quickly incorporated in accounting earnings than positive
economic income. However, this metric is inappropriate for our research design, because we are interested
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-10-
in examining the effects of earnings opacity on equity market variables, and using equity market variables
to measure earnings opacity would introduce circularity.
Consistent with much of the past literature (e.g., Healy (1985), Jones (1991), Dechow et al. (1995),
Leuz et al. (2001)), we compute scaled accruals from balance sheet and income statement information, and
then compute scaled cash flows as scaled operating income minus scaled accruals. We do not use
information from the cash flow statement because of differences in the presentation of cash flow information
across countries and time. In fact, many of our sample countries do not require the preparation or
presentation of a statement of cash flows. We define scaled accruals as
ACC kt = (CA kt CL kt - CASH kt + STD kt - DEP kt + TP kt) / TA kt-1 (1)
where
ACC kt = Scaled accruals for firm k, year t
CA kt = Change in total current assets for firm k, year t
CL kt = Change in total current liabilities for firm k, year t CASH kt = Change in cash for firm k, year t
STD kt = Change in current portion of long-term debt included in total current liabilities for firm
k, year t
DEP kt = Depreciation and amortization expense for firm k, year t
TP kt = Change in income taxes payable for firm k, year t
TA kt-1 = Total assets for firm k, year t-1.
We also repeated all our tests where scaled accruals were defined without subtracting depreciation
and amortization. This measurement of accruals focuses on working capital accruals, consistent with users
of financial statements focusing on earnings numbers that exclude depreciation and amortization (e.g.,
EBITDA). Our results using this definition of accruals is qualitatively similar to the results reported in this
paper.
Loss avoidance measure
We define firms with small positive earnings (small negative earnings) as firms with bottom line net
income scaled by lagged total assets between 0 and 1% (between 0 and -1%). We find the ratio of the
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-11-
number of firms with small positive earnings minus the number of firms with small negative earnings divided
by their sum. Higher this ratio for country i in year t, higher is the loss avoidance in country i, year t.
The idea behind this measure comes from Burgstahler and Dichev (1997). A variant of this measure
is used in Leuz et al (2001). The idea is that many small positive earnings numbers and few small negative
earnings numbers is indicative of managers trying to avoid losses, which is the most salient benchmark for
earnings identified in DeGeorge et al. (1999). Since this type of earnings management is expected to obscure
the relationship between accounting earnings and economic earnings, it is expected to increase earnings
opacity.
The effect of loss avoidance on the distribution of accounting earnings vis-a-vis economic earnings
is depicted in the Loss Avoidance graph of Figure 1.
Using the above ratio to measure loss avoidance has its problems. The most important problem is
that, like before, it penalizes countries with high economic growth rates. This is because firms are likely to
have positive net income rather negative net income in such countries, and this will bias the ratio upwards.
We address this bias, as before, by controlling for the countrys gross domestic product growth (GDP
growth) in all our tests.
Earnings Smoothing Measures
Our third and final measure of earnings opacity is earnings smoothing, which allows earnings to
obscure the underlying volatility of the firms economic performance, thus increasing earnings opacity.
Following Leuz et al. (2001), we find the cross-sectional correlation between the change in accruals and the
change in cash flows, both scaled by lagged total assets, in country i, year t. Cash flows are obtained by
subtracting accruals (which was obtained in (1)) from operating earnings. Because some degree of earnings
smoothing is a natural outcome of any accrual accounting process, this measure is expected to be negative
on average. However, the more negative this correlation, the more likely it is that earnings smoothing is
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-12-
obscuring the variability in underlying economic performance, and the greater is the earnings opacity. So,
the lower this correlation in country i in year t, the higher is the earnings smoothing in country i, year t.
The effect of earnings smoothing on the distribution of accounting earnings vis-a-vis economic
earnings is depicted in the Earnings Smoothing graph of Figure 1.
Overall Earnings Opacity Measures
We rank all the raw time-series earnings aggressiveness median observations, across countries and
years, into deciles, with higher ranks associated with greater earnings aggressiveness; we rank all the raw
time-series loss avoidance ratios, across countries and years, into deciles, with higher ranks associated with
greater loss avoidance; we rank all the raw time-series earnings smoothing correlations, across countries and
years, into deciles, with higher ranks associated with greater earnings smoothing. We then average the time-
series earnings aggressiveness rank, the time-series loss avoidance rank, and the time-series earnings
smoothing rank in each year per country to obtain a time-series of overall earnings opacity rank per country.
To construct cross-sectional measures of each individual dimension of earnings opacity per country,
we simply average over time the raw or the rank time-series measure of each individual dimension of
earnings opacity per country. To construct cross-sectional measures of overall earnings opacity per country,
we simply average over time the time-series of overall earnings opacity ranks per country we computed
before.
Stock Market Measures
Cost of Equity Measures
The cost of equity in country i is defined as the return shareholders require for holding shares in that
country. This is an expectations variable, which we measure using ex-post data. We use two approaches
that have been employed in the previous literature.
The first approach is to compute the cost of equity by backing it out from the classical constant
growth dividend discount model. It turns out to be the sum of the forecast of the dividend yield and the
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-13-
forecast of the growth rate of dividends. Appendix A in Bekaert and Harvey (2000) explores in great detail
the relationship between dividend yields and the cost of equity for more general models. Assuming that the
best forecast for future growth rates in dividends is the most current dividend growth rate, which implies that
we assume that dividend growth rates follow a random walk, it follows that the estimated cost of equity =
current dividend yield X (1+current growth rate of dividends) + current growth rate of dividends. This is
how we estimate the cost of equity in our first approach.
The advantages of using dividend yields to measure cost of equity are many. Dividend yields are
observable, stable, and stationary. A sharp change in cost of equity should lead to a sharp change in dividend
yields. The disadvantage of using dividend yields is that changes in dividend yields may come about because
of repurchases of stock, and may come about because of changes in growth opportunities. The first factor
is not much of a problem in emerging markets because repurchases are minor. The second factor, though
a concern in Bekaert and Harvey (2000), who look at the effect of liberalization, may not be an issue in our
paper. The reason is that earnings opacity is not likely to influence the growth opportunities of firms.
If the earnings opacity variables have no incremental effect on the cost of equity, then those variables
will be orthogonal to the above estimate of the cost of equity. We control for other influences on the cost
of equity. This is our first test.
The second approach to estimating the cost of equity explicitly accounts for risk. The international
version of the capital asset pricing model does not hold up well in the data (see Harvey (1991) or Ferson and
Harvey (1993)). The consensus seems to be that a countrys beta with respect to the world market portfolio
has some merit to explain expected returns for developed countries; the variance of return of the countrys
stock market does better in explaining expected returns for emerging markets (see Harvey (1995)).
We adopt a simplified version of Bekaert and Harvey (1995) as our international asset pricing model.
Their empirical specification allows for partial integration of a country to the world equity markets. Their
model is very appealing because it permits a country to evolve from a developing segmented market (where
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-14-
( ) ( )r r h h ei t f t i t i w t i t i t i t , , , cov , , , var , , = + + + 0 1
risk is measured by the countrys variance) to a developed country which is integrated to world equity
markets (where risk is measured by the sensitivity of a countrys equity returns to movements in the world
market portfolio). The special case of complete integration, where the world factor is the only factor, is
nested in their model. This international asset pricing model is expressed as follows:
(2)
where
ri, t is the dollar monthly return of the stock market index of country i at time t,
rf, t is the monthly return of the one month U.S. T-Bill at time t,
0 is a constant that would be estimated,
1i , t is a measure of the level of integration of country i at time t, 0 1i , t 1,
cov is the price of the covariance risk that would be estimated,
hi,w, t is the conditional covariance of the monthly return of the stock market index of country i with the
monthly return of the world index at time t,
var is the price of own country variance risk that would be estimated (which we are restricting to be the same
across all countries),
hi ,t is the conditional variance of the monthly return of the stock market index of country i at time t, and
ei,t is the residual error term.
The independent variables in model (2) conditional covariance hi,w, t and conditional variance hi,t
are separately estimated pair-wise for each country i and world pair from the multivariate ARCH model
specified below:
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-15-
( )
( )
r c
r c
h b a
h b a
h b a
i t i t
w t w t
i t i t i t i t
w t w t w t w t
i w t i t w t i t w t i
, ,
, ,
, , , ,
, , , ,
, , , , , , ,
,
,
,
,
= +
= +
= + + +
= + + +
= + + +
1
2
1 112 1
2 13 2
2 16 3
2
2 2
1
2 1
2 1
3 2
2 1
6 3
2
3 312 1 1
13 2 2
16
( )t w t
i t w t
i t i w t
i w t w t
h h
h h
3 3
0
0
,
, ,
, , ,
, , ,
,
, ~ , .
i t
o rts im p or ts
g d p
o rts im p orts
g d p
i t i t
i t
i t i t
i t
,
ex pex p
ex pex p
, ,
,
, ,
,
=
+
++
1
11
(3)
where
rw, t is the dollar monthly return of the stock market index of the world at time t,
i, t-j is the innovation in monthly return of the stock market index of country i at time t-j, j {0,1,2,3},
w, t-j is the innovation in monthly return of the stock market index of the world at time t-j, j {0,1,2,3},and
hw, t is the conditional variance of the monthly return of the stock market index of the world at time t.
Model (3) was first introduced by Bollerslev, Engle, and Wooldrige (1988). As in Engle, Lilien,
and Robins (1987), the weights of the lagged residual vectors are taken to be 1/2, 1/3, and 1/6, respectively.
The constants a2 , b2 , and c2 are constrained to be identical for all country-world pairs. Maximum likelihood
is used to estimate model (3).
The other independent variable in model (2) 1i , t measures the level of integration of country
i at time t. We define it as follows:
(4)
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The definition of1i , t in (4) implies that it is a function of the ratio of the sum of exports and imports to gross
domestic product. It is designed to take on values between zero and one. When its value is zero, the country
is not integrated with world equity markets, and its equity is exposed only to local risk (own variance). When
its value is one, the country is fully integrated with world equity markets, and its equity is exposed only to
global risk (covariance with world factor). Bekaert and Harvey (1997) find that increases in this ratio are
empirically associated with increased importance of the world factor relative to local risk factors.
If the earnings opacity variables have no incremental effect on the cost of equity, then those variables
will be orthogonal to the residuals from the model in (2). We control for other influences on this residual.
This is our second test.
The advantage of using a well-specified asset pricing factor model like (2) to measure cost of equity
is that we explicitly account for risk. This comes at a price. Recall that all the independent variables in
model (2) are estimates from other models. This introduces estimation error, which may introduce bias, and
it definitely reduces power.
Trade Measures
A good metric to capture the amount of trade in a market is turnover, which is defined as the ratio
of volume of dollar trade per month to dollar market capitalization at the end of the month. To mitigate the
effect of outliers, which occur because the denominator is small in some countries, we take the natural
logarithm of this ratio.
III. DATA AND DESCRIPTIVE STATISTICS
Our Earnings Opacity Measures
The data used in constructing the earnings opacity variables come from the Worldscope database for
the years 1985 through 1998. We restrict the sample to industrial firms (SIC codes 2000-3999 and SIC codes
5000-5999) to increase the homogeneity of our sample across countries and across time. Since the
underlying earnings process being represented by accounting earnings is similar for industrial firms, this
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7We ran all our tests using a broader sample consisting of all non-financial firms (i.e., we excluded only SIC codes 6000) in a previous
version of this paper. Such a sample has been constructed by Leuz et al. (2001) and Land and Lang (2002). Inferences from this expanded sample
are qualitatively similar to our reported results.
-17-
restriction reduces the probability that the cross-country differences and time-differences we observe in our
earnings opacity measures are caused by the difference in or changes in industrial composition in our sample.
This sample restriction is also consistent with much of the accounting literature (e.g., Alford et al. (1993),
and Ali and Hwang (2000)).7
Because our tests are panel data tests, we include countries which have data
for more than three years, and have more than 20 firms per year. This yields 58,653 firm-year observations
from 34 countries spanning the years 1986 through 1998. (We lose 1985 because the calculation of accruals
and cash flows requires data from year t-1.)
The names of the countries for which we have data is given in Column 1 in the Appendix, the sample
period per country is given in Column 2, and the number of firm-years per country is given in Column 3.
For each firm-year, we use the following variables from Worldscope: cash, total current assets, total current
liabilities, income taxes payable, current portion of long-term debt included in total current liabilities,
depreciation and amortization expense, operating income, net income, and total assets. Some firms do not
have information on income taxes payable or on the current portion of long-term debt included in total
current liabilities. Similar to Leuz et al. (2001), if these variables are missing, we assume them to be zero.
We include observations with fiscal years ending between July 1 of year t and June 30 of year t+1 in the
calculation of our earnings opacity variables for year t. So, for example, observations with fiscal years
ending between July 1, 1995 and June 30, 1996 are considered year 1995 observations. As discussed earlier,
we do not use cash flow information directly.
Descriptive information on each of the raw earnings opacity variables for each sample country is
provided in columns 2 through 4 of Table 1. Each column gives the average across the available years for
each country for each measure. Column 2 provides the average accruals divided by lagged total assets for
our sample firms. As expected, average accruals are negative, averaging about 2% of lagged total assets.
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Interestingly, 3 of the 34 countries in our sample Greece, India and Turkey have positive accruals. The
loss avoidance measure is presented in column 3. Avoidance of small negative bottom-line earnings is
observed in 32 of our 34 countries. Finally, the earnings smoothing measure the average cross-sectional
correlation between the change in cash flows and the change in accruals are presented in column 4. As
expected, the correlation is strongly negative in every country in our sample.
Other Earnings Opacity Measures
There are alternative cross-country measures related to the financial reporting environment that have
been documented in the past literature. We identify four of them. The first measure is the number of
auditors per 100,000 population. The number of auditors per 100,000 population comes from Saudagaran
and Diga (1997), Table 6, page 51. The original source is communication with the International Federation
of Accountants (IFAC) Secretariat on August 13, 1996. This variable is intended to proxy for the
enforcement of accounting standards. Column 5 in Table 1 gives this variable. As our raw measures for
earnings aggressiveness and loss avoidance increase and our raw measure for earnings smoothing decreases
as earnings opacity increases, auditors per 100,000 population is expected to have a negative relationship
with our measures of earnings aggressiveness and loss avoidance, and a positive relationship with our
measure of earnings smoothing. The second measure is a disclosure level variable that comes from
Saudagaran and Diga (1997), Table 2, page 46. The original source is the Center for International Financial
Analysis and Research (CIFAR (1995)). It represents a disclosure score based on the inclusion of 90 items
as required disclosures in annual reports for each country. The higher the number, more is the disclosure.
Column 6 in Table 1 gives this variable. As disclosure and earnings opacity are expected to be negatively
correlated as was auditors per 100,000 population, we expect this variable to have a negative relationship
with our measures of earnings aggressiveness and loss avoidance, and a positive relationship with our
measure of earnings smoothing. The third measure is extent of compliance with International Accounting
Standards (IAS). This data comes from Choi, Frost and Meek (1999), exhibit 8.6, page 264. They took it
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-19-
from International Accounting Standards Committee (IASCInsight, October, 1997). We assign a score of
0 for all countries that independently produce accounting standards and do not use international accounting
standards as the basis for those standards (this corresponds to categories F and G in Choi, Frost and Meek
(1999)). We assign a score of 1 for all countries that use international accounting standards as the basis for
their separately developed accounting standards, but promulgate some standards that offer more or less
choice than international accounting standards (this corresponds to category E in Choi, Frost and Meek
(1999)). Finally, we assign a score of 2 for countries that adopt international accounting standards with few,
if any, modifications beyond additional explanatory material (this corresponds to categories A through D in
Choi, Frost and Meek (1999)). Column 7 in Table 1 gives this variable. The relationship of this variable to
our earnings opacity measures depends on whether international accounting standards are better or worse
than the local standards. The fourth measure is the legal origin of the country. Column 8 in Table 1 gives
this variable, where common law countries are coded 1, whereas the rest are coded 0. This data comes from
the CIA World Factbook, 2001. Ball et al. (2000) argue that common law countries have a demand for more
transparent earnings, suggesting a negative relationship with our measures of earnings aggressiveness and
loss avoidance, and a positive relationship with our measure of earnings smoothing.
Table 2 presents a correlation matrix between our earnings opacity variables and each of the above
four opacity variables. As predicted, we observe that all earnings opacity variables decrease as the number
of auditors per 100,000 population increases. Two of the earnings opacity variables decrease as disclosure
level increases; however there seems to be no link between earnings smoothing and the disclosure variable.
Interestingly, there seems to be little link between legal origin and our earnings opacity variables and little
link between the extent of use of international accounting standards and our earnings opacity variables,
though five of the six correlations have the predicted sign. The latter finding is interesting. It tells us that
if we believe in our earnings opacity measures, we should conclude that the use of international accounting
standards does not help in making earnings numbers more transparent.
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Table 2 also presents the correlation between each of our three earnings opacity variables. These
correlations range in absolute value from 0.15 to 0.45, indicating that though there is some relationship
between our three earnings opacity variables, there is a distinct component to each measure.
Table 3 provides the rankings of earnings opacity across the countries in our sample for each of the
three dimensions of earnings opacity we identify, and for overall earnings opacity. U.S.A. has the least
amount of earnings opacity, followed by Norway. Greece, South Korea and Indonesia show the most severe
earnings opacity in our sample.
The time-series properties of our three dimensions of earnings opacity, as well as overall earnings
opacity, for the mean, the 25th percentile and the 75th percentile are presented in Figure 2. We can only graph
these series from 1994 because most of the emerging markets have data beginning only from this year.
Several points about these graphs are worth noting. First, all dimensions of earnings opacity appear to
decline in the late 1990s. Second, looking at the distance between the 25th percentile and the 75th percentile,
it seems that there is a little bit of convergence in earnings opacity across countries in the late 1990s, and this
convergence seems to be coming from the convergence in earnings aggressiveness in the late 1990s.
Stock Market Measures
Data on monthly equity indices of 20 developed countries were obtained from Morgan Stanley
Capital International (MSCI). Data on monthly equity indices of 14 emerging markets were obtained from
International Financial Corporation (IFC). The fourth column in the Appendix gives the sample period that
was available for these 34 monthly stock market indices in the 1986-1998 period. These indices are value-
weighted, and are calculated with dividend reinvestment. As noted by Harvey (1991), the returns computed
on the basis of these indices are highly correlated with popular country indices. The MSCI value-weighted
World Index was used as a proxy for the world market portfolio.
We computed monthly returns of each countrys stock market and the world market portfolio from
these indices. These returns are used in our international asset pricing factor model. The ninth column in
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Table 1 gives the mean return scaled by the standard deviation of returns per country in the 1986-1998
sample period (some countries do not have data for the full period.)
We obtained monthly data on the dividend yield for 32 of the 34 countries from the vendor
Datastream. The dividend yield was on the Datastream constructed indices. The seventh column in the
Appendix gives the sample period that was available for these 32 monthly dividend yield time-series. The
tenth column in Table I gives the mean of the dividend yield plus dividend growth rate variable per country
in the 1986-1998 sample period (some countries do not have data for the full period.)
The measure of trading that we adopted was turnover, which is defined as the ratio of the volume
of trade in the stock market to the market capitalization of the stock market. We took the natural logarithm
of this ratio. We could obtain monthly data on the volume of trade and market capitalization for 30 of the
34 countries from the vendor Datastream. The fifth and sixth column in the Appendix gives the sample
period that was available for these 30 monthly market capitalization and volume time-series. The eleventh
column in Table 1 gives the mean of this variable per country in the 1986-1998 sample period (some
countries do not have data for the full period.)
Bekaert and Harvey (1997) divide the sum of exports and imports with a countrys gross domestic
product to obtain a variable that proxies the level of integration of a country with the rest of the world. This
is because the level of globalization does affect the cost of equity (see Stulz (1999a)). We follow the same
method. Monthly data on exports and imports for the 34 countries were obtained from the International
Financial Statistics provided by the International Monetary Fund. For some countries the frequency of GDP
was quarterly, and for some it was yearly. To obtain monthly GDP, we divided by 3 in the former case, and
by 12 in the latter case. The eighth, ninth, and tenth column in the Appendix gives the sample period that
was available for these 34 GDP, exports, and imports time-series.
As purchasing power parity is not observed in the data, standard international asset pricing models
like Ferson and Harvey (1993) and Dumas and Solnik (1995) have a foreign exchange factor (FX factor).
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-22-
We include this control in our international asset pricing factor model as well. Monthly data on foreign
exchange rates are obtained from the International Financial Statistics. The eleventh column in the Appendix
gives the sample period that was available for these 34 monthly foreign exchange rate time-series.
As discussed before, since two of our measures of earnings opacity are being based on the
distribution of accruals, they may be biased against countries which exhibit fast economic growth. To
control for this, we use real GDP growth as another independent variable in our panel data tests. GDP
growth data comes from the World Bank. The average GDP growth exhibited during 1985-1998 in each of
our 34 countries is documented in the twelfth column in Table 1.
Bhattacharya and Daouk (2002) document that the enforcement of insider trading laws reduces the
cost of capital of a country. We obtain the insider trading enforcement date from Bhattacharya and Daouk
(2002), Table 1. These are given in the thirteenth column in Table 1. We control for the confounding effects
of insider trading enforcement in all our tests.
When a country opens up its capital markets to foreigners, the cost of equity is reduced through two
routes (Stulz (1999b). It reduces required return because risk-sharing improves, and it reduces required
return because corporate governance improves. Bekaert and Harvey (2000) and Henry (2000) empirically
confirm that such liberalization reduces the cost of equity. We obtain official liberalization dates from Table
I in Bekaert and Harvey (2000). These are given in the fourteenth column in Table 1. We control for the
confounding effects of liberalization in all our tests.
IV. DOES EARNINGS OPACITY AFFECT STOCK MARKETS?
We explore the effect of earnings opacity on two dimensions of an equity market in a country the
return the shareholders demand and how much shareholders trade. As can be seen from the descriptive
statistics in Table 1, there is a significant variation among countries in these dimensions. It could be argued
that these differences in equity markets across the world come about because of a number of differences in
country characteristics, not just because of earnings opacity. It could be further argued that some of these
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8La Porta et al. (1997, 1998), Levine (1997), Demirguc-Kunt and Maksimovic (1998) are just a few of the papers in the burgeoning law
and finance area.
-23-
country characteristics, like its economic, political and legal infrastructure, have a bigger influence on the
stock market of the country than how much earnings are opaque in that country.8 It could be even further
argued that it is impossible to control all these factors in cross-sectional tests.
The above are valid criticisms. To mitigate this criticism, all our tests are panel data tests. Our panel
data tests are corrected for country fixed-effects, country-specific heteroskedasticity and country-specific
autocorrelation. Therefore, though it may be true that institutional factors impact the stock market more than
earnings opacity, as long as these country-specific institutional factors remain stable during our period of
study, their inclusion has no effect on the coefficient estimates in panel data tests with the above corrections.
Cost of Equity
Using Dividend Yields
As discussed before, we can back out the cost of equity from the dividend discount model. If we
further assume that dividend growth rates follow a random walk, the estimated cost of equity = current
dividend yield X (1+current growth rate of dividends) + current growth rate of dividends.
Using this estimate of the cost of equity as the dependent variable, we run four panel time-series
regressions with country-fixed effects. Model 1 uses the earnings aggressiveness rank measure as the
independent variable, model 2 uses the loss avoidance rank measure as the independent variable, model
3 uses the earnings smoothing rank measure as the independent variable, whereas model 4 uses the overall
earnings opacity rank measure as the independent variable. We correct for country-specific
heteroskedasticity and country-specific autocorrelation in each case. As liberalization and insider trading
enforcement have been empirically shown to affect the cost of equity, and as these institutional variables did
change during our period of study (see columns 13 and 14 in Table 1), we use an indicator for liberalization
and an indicator for insider trading enforcement as our control variables in each case. As discussed before,
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9This is calculated as 0.0014766 (per month) X 12 months X (6.538 (rank of 75 th percentile) - 4.692 (rank of 25th percentile))
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we also control for GDP growth rates. Note that institutional variables that did not change, or for which we
do not have data for changes (e.g., shareholder rights), need not be included as controls, because in a panel
time-series regression with fixed-effects, they will have no effect. The panel regressions use data for the 32
countries for which we have dividend yield data from January 1986 to December 1998 (some countries do
not have data for the full time period).
Table 4 presents the results from this panel time-series regression. The coefficients of the overall
earnings opacity measure (model 4) is positive and statistically significant at the five percent level. A
detailed look at models 1, 2 and 3 reveals that this significance is coming from the earnings aggressiveness
variable, although the coefficients on the other earnings opacity variables have the right sign. As the
independent variable is increasing in the level of earnings opacity, this means that an increase in earnings
opacity in a country is associated with an increase in the cost of equity in the stock market of that country.
The association is also economically significant. An increase in overall earnings opacity from the 25th
percentile rank to the 75th percentile rank is associated with a 3.3% increase in the cost of equity. 9 The
coefficient on the insider trading enforcement variable has the right sign and is statistically significant,
implying that insider trading enforcement causes the cost of equity to drop as seen in Bhattacharya and
Daouk (2002). Liberalization seems not to have an effect.
Using an International Asset Pricing Model
We estimate equation (2) using non-linear least squares. The regressions use data for our 34 countries
from December 1986 to December 1998 (some countries do not have data for the full time period). The
results are given in Panel A of Table 5.
Panel A of Table 5 reveals that though covariance risk seems to have a positive price (cov is
positive), the estimates are statistically significant only at the eleven percent level. It also reveals that though
own country variance risk has a positive price(var is positive), the estimates are statistically significant only
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10The reader may be wondering why we use a two-step procedure (first remove the effect of risk, and then test the effect on residuals)
instead of using a one-step procedure (include all independent variables in model (2) directly.) The reason is because of convergence problems in
the one-step non-linear estimation procedure.
11
As purchasing power parity is not observed in the data, standard models control for a foreign exchange factor (FX factor). This is whywe include it. However, because of convergence problems, our estimation is a two-step procedure. Therefore, unlike the standard models, in the
first step we strip out the effects of the local variance factor and the world factor, and in the second step, to isolate the effect of earnings opacity, we
strip out the effects of other factors like the FX factor. The FX factor that we use is the conditional covariance of the return of the stock market index
of the country with the return a U.S. investor would get if she held the foreign currency. This conditional covar iance is obtained by using the
multivariate ARCH model we previously discussed in equation (3) just replace the world portfolio (w) by the foreign exchange portfolio (ifx).
12The proxy for liquidity risk is turnover. Turnover is the ratio of volume of trade to market capitalization. We take the natural logarithm
of this ratio for reasons mentioned before.
-25-
at the thirteen percent level. These results contrast with the results of Bhattacharya and Daouk (2002), who
use the same estimation technique and obtain statistical significance, but that is because their estimation was
carried out for a longer 1969-1998 sample period.
If the earnings opacity variables have no incremental effect on the cost of equity after controlling
for risk, then those earnings opacity variables will be orthogonal to the residuals from model (2). We
therefore test the null hypothesis that the earnings opacity variables have no effect by regressing the residuals
in (2) on the earnings opacity variables.10
Using the residuals from (2) as the dependent variable, we run four panel time-series regressions with
country-fixed effects. Model 1 uses the earnings aggressiveness measure as the independent variable,
model 2 uses the loss avoidance measure as the independent variable, model 3 uses the earnings
smoothing measure as the independent variable, whereas model 4 uses the overall earnings opacity
measure as the independent variable. We correct for country-specific heteroskedasticity and country-specific
autocorrelation in each case. We control for liberalization, insider trading enforcement, and GDP growth
as before. We control for two other sources of risk that have been documented in the literature foreign
exchange risk (Ferson and Harvey (1993), Dumas and Solnik (1995))11 as well as liquidity risk (Brennan and
Subrahmanyam (1996))12 and which continuously change in our sample period.
Panel B of Table 5 presents the results from this panel time-series regression. None of the
coefficients of the earnings opacity variables are significant, except the coefficient on the loss avoidance
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measure, which has the wrong sign.
Trading
The measure of trade is turnover, which is defined as the ratio of volume of trade to market
capitalization. Using the natural logarithm of this ratio as the dependent variable, we run four panel time-
series regressions with country-fixed effects. Model 1 uses the earnings aggressiveness measure as the
independent variable, model 2 uses the loss avoidance measure as the independent variable, model 3 uses
the earnings smoothing measure as the independent variable, whereas model 4 uses the overall earnings
opacity measure as the independent variable. We correct for country-specific heteroskedasticity and
country-specific autocorrelation in each case. We control for liberalization, insider trading enforcement,
and GDP growth as before. The panel regressions use data for the 30 countries for which we have trading
data from January 1986 to December 1998 (some countries do not have data for the full time period).
Table 6 presents the results from this panel time-series regression. Except for model 2 whose
coefficient is insignificant, the coefficients of all the earnings opacity measures (models 1 and 3) as well as
the coefficient of the overall earnings opacity measure (model 4) are negative and statistically significant at
the five percent level. As the independent variable is increasing in the level of earnings opacity, this means
that an increase in earnings opacity in a country is associated with a decrease in trading activity in the stock
market of that country. A decrease in overall earnings opacity from the 75th percentile rank to the 25th
percentile rank is associated with a 5.0 % increase in annual trade. The coefficients on liberalization and
insider trading enforcement have the right sign, and are also statistically significant.
V. CONCLUSIONS
Though earnings opacity has been documented in the past literature, it has not been clear whether
shareholders price earnings opacity in equity markets. This paper attempts to shed light on this issue by
exploring the link between earning opacity and equity markets in a broad cross-section of countries. The two
characteristics of equity markets that we explore are the return the shareholders demand (cost of equity) and
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how much they trade (turnover).
Given the constraints of our data set, which makes it impossible to compare across countries
managerial motivations, accounting standards and audit quality, we attempt to measure earnings opacity
directly from the financial statements of firms. We use these distributional properties to estimate for each
country for each year, three dimensions of earnings opacity earnings aggressiveness, loss avoidance, and
earnings smoothing. We combine these three dimensions to obtain an overall earnings opacity time-series
measure per country.
This is what we find. Overall earnings opacity is declining in the late 1990s. We document in our
panel data tests that, after controlling for other influences, an increase in earnings opacity in a country is
linked to a decrease in trading in the stock market of that country. The results with respect to the cost of
equity of the country are mixed; one test shows a positive linkage, whereas another test shows no linkage.
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APPENDIX
Description of Data Used____________________________________________________________________________________________________________________________________________________________
(1) (2) (3) (4) (5) (6) (7) (8) (9) (10) (11)
Country Financial Number Indices of Market Dollar Dividend GDP of Exports of Imports of Exchange
Statement of Stock Capitalization Volume Yield Country Country Country Rate
Data Firm-Years Markets of Main in Main
Exchange Exchange
(Annual) (Monthly) (Monthly) (Monthly) (Monthly) (Quarterly (Monthly) (Monthly) (Monthly)
or Annual)(Sample (Sample (Sample (Sample (Sample (Sample (Sample (Sample (Sample
Period) Period) Period) Period) Period) Period) Period) Period) Period)
____________________________________________________________________________________________________________________________________________________________
Australia 86Y-98Y 888 01/86-12/98 01/86-12/98 01/86-12/98 01/86-12/98 85Q4-98Q4 01/86-12/98 01/86-12/98 01/86-12/98
Austria 87Y-98Y 472 01/86-12/98 01/86-12/98 08/86-12/98 01/86-12/98 85Q4-98Q4 01/86-12/98 01/86-12/98 01/86-12/98
Belgium 86Y-98Y 567 01/86-12/98 01/86-12/98 01/86-12/98 01/86-12/98 86Y-98Y 01/93-12/98 01/93-12/98 01/86-12/98
Brazil 91Y-98Y 550 01/86-12/98 07/94-12/98 NA NA 86Y-98Y 01/86-12/98 01/86-12/98 01/86-12/98
Canada 86Y-98Y 1,997 01/86-12/98 01/86-12/98 01/86-12/98 01/86-12/98 85Q4-98Q4 01/86-12/98 01/86-12/98 01/86-12/98
Chile 94Y-98Y 147 01/86-12/98 07/89-12/98 07/89-12/98 01/86-12/98 86Y-98Y 01/86-12/98 01/86-12/98 01/86-12/98
Denmark 88Y-98Y 953 01/86-12/98 01/86-12/98 04/88-12/98 01/86-12/98 86Y-98Y 01/86-12/98 01/86-12/98 01/86-12/98
Finland 86Y-98Y 704 12/87-12/98 03/88-12/98 NA 03/88-12/98 86Y-98Y 01/86-12/98 01/86-12/98 01/86-12/98
France 86Y-98Y 3,834 01/86-12/98 01/86-12/98 06/88-12/98 01/86-12/98 85Q4-98Q4 01/86-12/98 01/86-12/98 01/86-12/98
Germany 86Y-98Y 3,847 01/86-12/98 01/86-12/98 06/88-12/98 01/86-12/98 85Q4-98Q4 01/86-12/98 01/86-12/98 01/86-12/98
Greece 90Y-98Y 491 01/86-12/98 01/88-12/98 01/88-12/98 01/90-12/98 86Y-98Y 01/86-12/98 01/86-12/98 01/86-12/98
Hong Kong 87Y-98Y 925 01/86-12/98 01/86-12/98 06/88-12/98 01/86-12/98 86Y-98Y 01/86-12/98 01/86-12/98 01/86-12/98
India 92Y-98Y 1,342 01/86-12/98 01/90-12/98 01/95-12/98 01/90-12/98 86Y-98Y 01/86-12/98 01/86-12/98 01/86-12/98
Indonesia 92Y-98Y 493 12/89-12/98 04/90-12/98 04/90-12/97 04/90-12/98 86Y-98Y 01/86-12/98 01/86-12/98 01/86-12/98
Ireland 86Y-98Y 445 12/87-12/98 01/86-12/98 NA 01/86-12/98 86Y-98Y 01/86-12/98 01/86-12/98 01/86-12/98Italy 86Y-98Y 1,146 01/86-12/98 01/86-12/98 07/86-12/98 01/86-12/98 86Y-98Y 01/86-12/98 01/86-12/98 01/86-12/98
Japan 86Y-98Y 8,762 01/86-12/98 01/86-12/98 01/90-12/98 01/86-12/98 85Q4-98Q4 01/86-12/98 01/86-12/98 01/86-12/98
Malaysia 86Y-98Y 1,233 01/86-12/98 01/86-12/98 01/86-12/98 01/86-12/98 86Y-98Y 01/86-12/98 01/86-12/98 01/86-12/98
Mexico 90Y-98Y 361 01/86-12/98 01/88-12/98 01/88-12/98 05/89-12/98 86Y-98Y 01/86-12/98 01/86-12/98 01/86-12/98
Netherlands 86Y-98Y 1,367 01/86-12/98 01/86-12/98 02/86-12/98 01/86-12/98 86Y-98Y 01/86-12/98 01/86-12/98 01/86-12/98
Norway 88Y-98Y 502 01/86-12/98 01/86-12/98 01/86-12/98 01/86-12/98 85Q4-98Q4 01/86-12/98 01/86-12/98 01/86-12/98
Pakistan 92Y-98Y 361 01/86-12/98 NA NA NA 86Y-98Y 01/86-12/98 01/86-12/98 01/86-12/98
Portugal 93Y-98Y 165 01/86-12/98 01/90-12/98 01/90-12/98 01/90-12/98 86Y-98Y 01/86-12/98 01/86-12/98 01/86-12/98
Singapore 80Y-98Y 566 01/86-12/98 01/86-12/98 01/86-12/98 01/86-12/98 86Y-98Y 01/86-12/98 01/86-12/98 01/86-12/98
South Africa 86Y-98Y 889 12/92-12/98 01/86-12/98 01/90-12/98 01/86-12/98 85Q4-98Q4 01/86-12/98 01/86-12/98 01/86-12/98
South Korea 89Y-98Y 867 01/86-12/98 09/87-12/98 09/87-12/98 09/87-12/98 85Q4-98Q4 01/86-12/98 01/86-12/98 01/86-12/98
Spain 88Y-98Y 483 01/86-12/98 03/87-12/98 02/90-12/98 03/87-12/98 86Y-98Y 01/86-12/98 01/86-12/98 01/86-12/98
Sweden 86Y-98Y 1,004 01/86-12/98 01/86-12/98 01/86-12/98 01/86-12/98 86Y-98Y 01/86-12/98 01/86-12/98 01/86-12/98
Switzerland 86Y-98Y 1,261 01/86-12/98 01/86-12/98 01/89-12/98 01/86-12/98 86Y-98Y 01/86-12/98 01/86-12/98 01/86-12/98
Taiwan 93Y-98Y 577 01/86-12/98 09/87-12/98 04/91-12/98 05/88-12/98 85Q4-98Y 01/88-12/98 01/88-12/98 12/93-12/98
Thailand 92Y-98Y 765 01/86-12/98 01/87-12/98 01/87-12/98 01/87-12/98 86Y-98Y 01/86-12/98 01/86-12/98 01/86-12/98
Turkey 93Y-98Y 188 12/86-12/98 01/88-12/98 01/88-12/98 06/89-12/98 87Q1-98Q4 01/86-12/98 01/86-12/98 01/86-12/98
United Kingdom 86Y-98Y 8,974 01/86-12/98 01/86-12/98 10/86-12/98 01/86-12/98 85Q4-98Q4 01/86-12/98 01/86-12/98 01/86-12/98
United States 86Y-98Y 11,527 01/86-12/98 01/86-12/98 01/86-12/98 01/86-12/98 85Q4-98Q4 01/86-12/98 01/86-12/98 01/86-12/98
All Countries 58,653
____________________________________________________________________________________________________________________________________________________________
Notes:
(1) Annual financial statement data for firms in 20 developed markets and 14 emerging markets were obtained from Worldscope. These countries are listed in Column 1. The sample period per country
is given in Column 2. The number of firm-years is given in Column 3.
(2) Data on monthly stock market indices for the 20 developed markets were obtained from Morgan Stanley Capital Market International (MSCI). Data on monthly stock market indices for the 14
emerging markets were obtained from the International Financial Corporation (IFC). The sample periods are given in Column 4.
(3) Data on monthly market capitalization, dollar volume, and monthly dividend yields were obtained from Datastream. The sample periods are given in Columns 5,6, and 7.
(4) Data on quart erly/annual GDP, monthly exports, monthly imports, and monthly foreign exchange rates were from the International Financial Statistics of the International Monetary Fund. The
statistics for Taiwan come from Datastream. The sample periods are given in Columns 8, 9, 10 and 11.
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TABLE 1
Summary Statistics
EARNINGS OPACITY OTHER VARIABLES
(1)
Countries
(2)
Earnings
Aggressiveness
(3)
Loss
Avoidance
(4)
Earnings
Smoothing
(5)
Auditors per
100,000population
(6)
Disclosure
level
(7)
IAS
use
(8)
Common
law
(9)
Mean monthly return/
standard deviation ofmonthly return
(10)
Dividend
Yield +DividendGrowth
(11)
Trade
(12)
Real %
GDP growth(1985-1998)
(13)
Insider Trading
EnforcementDate
(14)
Liberalization
date
Australia -0.0213 -0.04615 -0.82374 539 80 0 Yes 0.1292 0.00935 -3.3862 3.14 1996 Before 01/86
Austria -0.03727 0.500397 -0.87909 NA 62 0 No 0.0980 0.01547 -3.5173 2.49 No Before 01/86
Belgium -0.05467 0.317765 -0.87866 38 68 0 No 0.3282 0.00944 -4.6080 2.21 1994 Before 01/86
Brazil -0.0068 0.035416 -0.77614 1 NA 1 No 0.0285 NA NA 2.70 1978 05/91
Canada -0.03433 0.450318 -0.81781 350 75 0 Yes 0.1446 0.00446 -3.6756 2.54 1976 Before 01/86
Chile -0.01706 0.6 -0.91368 87 78 NA No 0.2628 0.00543 -4.9177 6.75 1996 01/92
Denmark -0.03937 0.267444 -0.91274 106 75 0 No 0.2198 0.01353 -5.0497 2.37 1996 Before 01/86
Finland -0.03267 0.621092 -0.88223 10 83 0 No 0.1572 0.00785 NA 2.12 1993 Before 01/86
France -0.03827 0.376352 -0.86549 45 78 1 No 0.2164 0.01187 -4.0970 2.13 1975 Before 01/86
Germany -0.04138 0.586525 -0.8978 26 67 0 No 0.1671 0.00846 -1.9795 2.96 1995 Before 01/86
Greece 0.01344 0.652206 -0.91468 12 61 NA No 0.1708 0.01757 -4.0892 2.15 1996 12/87
Hong Kong -0.01194 0.17013 -0.85786 110 73 0 Yes 0.1455 0.01283 -3.401 5.30 1994 Before 01/86
India 0.001681 0.735644 -0.86787 9 61 1 Yes 0.0301 0.01447 -3.7879 5.73 1998 11/92
Indonesia -0.00098 0.733766 -0.85613 2 NA NA No -0.0876 0.01152 -4.5513 4.55 1996 09/89
Ireland -0.024 0.153846 -0.86847 262 81 1 Yes 0.2213 0.01216 NA 5.95 No Before 01/86
Italy -0.02733 0.505334 -0.92531 110 66 0 No 0.1339 0.00898 -4.2832 1.93 1996 Before 01/86
Japan -0.01247 0.642863 -0.92135 10 71 0 No 0.0698 0.00475 -4.2534 2.74 1990 Before 01/86
Korea (South) -0.0115 0.595265 -0.93793 7 68 0 No 0.0433 -0.00543 -2.9382 7.48 1988 12/88
Malaysia -0.01226 0.469553 -0.87234 48 79 2 Yes 0.0271 -0.00042 -4.3673 6.50 1996 05/89
Mexico -0.02058 -0.03333 -0.74486 15 71 1 No 0.1243 0.00042 -3.3118 3.27 No Before 01/86
Netherlands -0.04506 0.378023 -0.9172 52 74 1 No 0.3426 0.01126 -2.8995 2.74 1994 Before 01/86
Norway -0.03786 0.178788 -0.72913 NA 75 1 No 0.0839 0.00845 -3.4892 2.94 1990 02/91
Pakistan -0.02584 0.616327 -0.91133 2 73 2 Yes 0.0369 NA NA 4.26 No 07/86
Portugal -0.06614 0.211112 -0.87479 NA NA 1 No 0.0822 -0.00791 -5.1253 4.38 No Before 01/86
Singapore -0.02534 0.484873 -0.88578 273 79 1 Yes 0.0958 0.00538 -4.0609 6.97 1978 01/92
South Africa -0.02021 0.307692 -0.88157 35 79 1 No 0.0609 0.00761 -4.2894 1.30 No Before 01/86
Spain -0.0379 0.514142 -0.85582 18 72 0 No 0.2321 0.00925 -3.3038 3.18 1998 Before 01/86
Sweden -0.02256 0.340096 -0.84528 41 83 0 No 0.2242 0.01257 -3.6422 1.49 1990 Before 01/86
Switzerland -0.03963 0.589985 -0.87921 53 80 1 No 0.2602 0.01252 -3.3903 1.51 1995 Before 01/86
Taiwan -0.02405 0.691198 -0.85276 17 58 NA No 0.0950 0.00817 -2.3109 7.26 1989 01/91
Thailand -0.03953 0.730403 -0.85693 5 66 2 Yes 0.0542 0.00223 -3.3376 5.97 1993 09/87
Turkey 0.127142 0.5 -0.67144 NA 58 1 No 0.0698 0.00244 -3.6251 4.82 1996 08/89
United Kingdom -0.02924 0.372985 -0.8683 352 85 0 Yes 0.2369 0.01099 -3.1222 2.57 1981 Before 01/86
United States -0.03833 0.350638 -0.77688 168 76 0 Yes 0.3097 0.00694 -2.7766 2.73 1961 Before 01/86
All Countries -0.02141 0.38765 -0.86541 93 73 0.1416 0.00789 -3.7196 3.74
______________________________________________________________________________________________________________________________________________________________________________
Notes and Sources:
(1) Annual financial statement data for firms in 20 developed markets and 14 emerging markets were obtained from Worldscope. These countries are listed in Column 1.
(2) We scale accruals by lagged total assets for each firm, determine its median in the cross-section of firms per country per year, and then average across time to obtain the earnings aggressiveness variable per country. Thi
is listed in Column 2.
(3) We define firms with small positive earnings (small negative earnings) as firms with net income scaled by lagged total asset s between 0 and 1% (between 0 and -1%). We subtract the number of firms with small negativ
earnings from the number of firms with small positive earnings per country per year, divide this difference by the sum of the two, and then average this ratio across t ime to obtain the loss avoidance variable per country
This is listed in Column 3.
(4) We find the correlation between the change in accruals and the change in operating cash flows (both scaled by lagged total assets) in the cross-section of firms per country per year, and then average across time to obtain
the earnings smoothing variable per country. This is listed in Column 4.
(5) The number of auditors per 100,000 population in Column 5 comes from Saudagaran and Diga (1997), Table 6, page 51. The original source is the International Federat ion of Accountants (IFAC) secretariat, 8/13/1996(6) Disclosure level data in Column 6 comes from Saudagaran and Diga (1997), Table 2, page 46. The original source is the Center for International Financial Analysis and Research (CIFAR (1995)). The higher the number
more is the disclosure.
(7) International Accounting Standards (IAS)
Recommended